5

I can successfully run the java version of pi example as follows.

./bin/spark-submit --class org.apache.spark.examples.SparkPi \ 
    --master yarn-client \ 
    --num-executors 3 \ 
    --driver-memory 4g \ 
    --executor-memory 2g \ 
    --executor-cores 1 \ 
    --queue thequeue \ 
    lib/spark-examples*.jar \ 
    10 

However, the python version failed with the following error information. I used yarn-client mode. The pyspark command line with yarn-client mode returned the same info. Can anyone help me to figure out this problem?

nlp@yyy2:~/spark$ ./bin/spark-submit --master yarn-client examples/src/main/python/pi.py 
15/01/05 17:22:26 INFO spark.SecurityManager: Changing view acls to: nlp 
15/01/05 17:22:26 INFO spark.SecurityManager: Changing modify acls to: nlp 
15/01/05 17:22:26 INFO spark.SecurityManager: SecurityManager: authentication disabled; ui acls disabled; users with view permissions: Set(nlp); users with modify permissions: Set(nlp) 
15/01/05 17:22:26 INFO slf4j.Slf4jLogger: Slf4jLogger started 
15/01/05 17:22:26 INFO Remoting: Starting remoting 
15/01/05 17:22:26 INFO Remoting: Remoting started; listening on addresses :[akka.tcp://sparkDriver@yyy2:42747] 
15/01/05 17:22:26 INFO util.Utils: Successfully started service 'sparkDriver' on port 42747. 
15/01/05 17:22:26 INFO spark.SparkEnv: Registering MapOutputTracker 
15/01/05 17:22:26 INFO spark.SparkEnv: Registering BlockManagerMaster 
15/01/05 17:22:26 INFO storage.DiskBlockManager: Created local directory at /tmp/spark-local-20150105172226-aeae 
15/01/05 17:22:26 INFO storage.MemoryStore: MemoryStore started with capacity 265.1 MB 
15/01/05 17:22:27 WARN util.NativeCodeLoader: Unable to load native-hadoop library for your platform... using builtin-java classes where applicable 
15/01/05 17:22:27 INFO spark.HttpFileServer: HTTP File server directory is /tmp/spark-cbe0079b-79c5-426b-b67e-548805423b11 
15/01/05 17:22:27 INFO spark.HttpServer: Starting HTTP Server 
15/01/05 17:22:27 INFO server.Server: jetty-8.y.z-SNAPSHOT 
15/01/05 17:22:27 INFO server.AbstractConnector: Started [email protected]:57169 
15/01/05 17:22:27 INFO util.Utils: Successfully started service 'HTTP file server' on port 57169. 
15/01/05 17:22:27 INFO server.Server: jetty-8.y.z-SNAPSHOT 
15/01/05 17:22:27 INFO server.AbstractConnector: Started [email protected]:4040 
15/01/05 17:22:27 INFO util.Utils: Successfully started service 'SparkUI' on port 4040. 
15/01/05 17:22:27 INFO ui.SparkUI: Started SparkUI at http://yyy2:4040
15/01/05 17:22:27 INFO client.RMProxy: Connecting to ResourceManager at yyy14/10.112.168.195:8032 
15/01/05 17:22:27 INFO yarn.Client: Requesting a new application from cluster with 6 NodeManagers 
15/01/05 17:22:27 INFO yarn.Client: Verifying our application has not requested more than the maximum memory capability of the cluster (8192 MB per container) 
15/01/05 17:22:27 INFO yarn.Client: Will allocate AM container, with 896 MB memory including 384 MB overhead 
15/01/05 17:22:27 INFO yarn.Client: Setting up container launch context for our AM 
15/01/05 17:22:27 INFO yarn.Client: Preparing resources for our AM container 
15/01/05 17:22:28 INFO hdfs.DFSClient: Created HDFS_DELEGATION_TOKEN token 24 for xxx on ha-hdfs:hzdm-cluster1 
15/01/05 17:22:28 INFO yarn.Client: Uploading resource file:/home/nlp/platform/spark-1.2.0-bin-2.5.2/lib/spark-assembly-1.2.0-hadoop2.5.2.jar -> hdfs://hzdm-cluster1/user/nlp/.sparkStaging/application_1420444011562_0023/spark-assembly-1.2.0-hadoop2.5.2.jar 
15/01/05 17:22:29 INFO yarn.Client: Uploading resource file:/home/nlp/platform/spark-1.2.0-bin-2.5.2/examples/src/main/python/pi.py -> hdfs://hzdm-cluster1/user/nlp/.sparkStaging/application_1420444011562_0023/pi.py 
15/01/05 17:22:29 INFO yarn.Client: Setting up the launch environment for our AM container 
15/01/05 17:22:29 INFO spark.SecurityManager: Changing view acls to: nlp 
15/01/05 17:22:29 INFO spark.SecurityManager: Changing modify acls to: nlp 
15/01/05 17:22:29 INFO spark.SecurityManager: SecurityManager: authentication disabled; ui acls disabled; users with view permissions: Set(nlp); users with modify permissions: Set(nlp) 
15/01/05 17:22:29 INFO yarn.Client: Submitting application 23 to ResourceManager 
15/01/05 17:22:30 INFO impl.YarnClientImpl: Submitted application application_1420444011562_0023 
15/01/05 17:22:31 INFO yarn.Client: Application report for application_1420444011562_0023 (state: ACCEPTED) 
15/01/05 17:22:31 INFO yarn.Client: 
         client token: Token { kind: YARN_CLIENT_TOKEN, service:  } 
         diagnostics: N/A 
         ApplicationMaster host: N/A 
         ApplicationMaster RPC port: -1 
         queue: root.default 
         start time: 1420449749969 
         final status: UNDEFINED 
         tracking URL: http://yyy14:8070/proxy/application_1420444011562_0023/
         user: nlp 
15/01/05 17:22:32 INFO yarn.Client: Application report for application_1420444011562_0023 (state: ACCEPTED) 
15/01/05 17:22:33 INFO yarn.Client: Application report for application_1420444011562_0023 (state: ACCEPTED) 
15/01/05 17:22:34 INFO yarn.Client: Application report for application_1420444011562_0023 (state: ACCEPTED) 
15/01/05 17:22:35 INFO yarn.Client: Application report for application_1420444011562_0023 (state: ACCEPTED) 
15/01/05 17:22:36 INFO yarn.Client: Application report for application_1420444011562_0023 (state: ACCEPTED) 
15/01/05 17:22:36 INFO cluster.YarnClientSchedulerBackend: ApplicationMaster registered as Actor[akka.tcp://sparkYarnAM@yyy16:52855/user/YarnAM#435880073] 
15/01/05 17:22:36 INFO cluster.YarnClientSchedulerBackend: Add WebUI Filter. org.apache.hadoop.yarn.server.webproxy.amfilter.AmIpFilter, Map(PROXY_HOSTS -> yyy14, PROXY_URI_BASES -> http://yyy14:8070/proxy/application_1420444011562_0023), /proxy/application_1420444011562_0023 
15/01/05 17:22:36 INFO ui.JettyUtils: Adding filter: org.apache.hadoop.yarn.server.webproxy.amfilter.AmIpFilter 
15/01/05 17:22:37 INFO yarn.Client: Application report for application_1420444011562_0023 (state: RUNNING) 
15/01/05 17:22:37 INFO yarn.Client: 
         client token: Token { kind: YARN_CLIENT_TOKEN, service:  } 
         diagnostics: N/A 
         ApplicationMaster host: yyy16 
         ApplicationMaster RPC port: 0 
         queue: root.default 
         start time: 1420449749969 
         final status: UNDEFINED 
         tracking URL: http://yyy14:8070/proxy/application_1420444011562_0023/
         user: nlp 
15/01/05 17:22:37 INFO cluster.YarnClientSchedulerBackend: Application application_1420444011562_0023 has started running. 
15/01/05 17:22:37 INFO netty.NettyBlockTransferService: Server created on 35648 
15/01/05 17:22:37 INFO storage.BlockManagerMaster: Trying to register BlockManager 
15/01/05 17:22:37 INFO storage.BlockManagerMasterActor: Registering block manager yyy2:35648 with 265.1 MB RAM, BlockManagerId(<driver>, yyy2, 35648) 
15/01/05 17:22:37 INFO storage.BlockManagerMaster: Registered BlockManager 
15/01/05 17:22:37 WARN remote.ReliableDeliverySupervisor: Association with remote system [akka.tcp://sparkYarnAM@yyy16:52855] has failed, address is now gated for [5000] ms. Reason is: [Disassociated]. 
15/01/05 17:22:38 ERROR cluster.YarnClientSchedulerBackend: Yarn application has already exited with state FINISHED! 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/stages/stage/kill,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/static,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/executors/threadDump/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/executors/threadDump,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/executors/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/executors,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/environment/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/environment,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/storage/rdd/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/storage/rdd,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/storage/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/storage,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/stages/pool/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/stages/pool,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/stages/stage/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/stages/stage,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/stages/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/stages,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/jobs/job/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/jobs/job,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/jobs/json,null} 
15/01/05 17:22:38 INFO handler.ContextHandler: stopped o.e.j.s.ServletContextHandler{/jobs,null} 
15/01/05 17:22:38 INFO ui.SparkUI: Stopped Spark web UI at http://yyy2:4040
15/01/05 17:22:38 INFO scheduler.DAGScheduler: Stopping DAGScheduler 
15/01/05 17:22:38 INFO cluster.YarnClientSchedulerBackend: Shutting down all executors 
15/01/05 17:22:38 INFO cluster.YarnClientSchedulerBackend: Asking each executor to shut down 
15/01/05 17:22:38 INFO cluster.YarnClientSchedulerBackend: Stopped 
15/01/05 17:22:39 INFO spark.MapOutputTrackerMasterActor: MapOutputTrackerActor stopped! 
15/01/05 17:22:39 INFO storage.MemoryStore: MemoryStore cleared 
15/01/05 17:22:39 INFO storage.BlockManager: BlockManager stopped 
15/01/05 17:22:39 INFO storage.BlockManagerMaster: BlockManagerMaster stopped 
15/01/05 17:22:39 INFO spark.SparkContext: Successfully stopped SparkContext 
15/01/05 17:22:39 INFO remote.RemoteActorRefProvider$RemotingTerminator: Shutting down remote daemon. 
15/01/05 17:22:39 INFO remote.RemoteActorRefProvider$RemotingTerminator: Remote daemon shut down; proceeding with flushing remote transports. 
15/01/05 17:22:39 INFO remote.RemoteActorRefProvider$RemotingTerminator: Remoting shut down. 
15/01/05 17:22:57 INFO cluster.YarnClientSchedulerBackend: SchedulerBackend is ready for scheduling beginning after waiting maxRegisteredResourcesWaitingTime: 30000(ms) 
Traceback (most recent call last): 
  File "/home/nlp/platform/spark-1.2.0-bin-2.5.2/examples/src/main/python/pi.py", line 29, in <module>
    sc = SparkContext(appName="PythonPi") 
  File "/home/nlp/spark/python/pyspark/context.py", line 105, in __init__ 
    conf, jsc) 
  File "/home/nlp/spark/python/pyspark/context.py", line 153, in _do_init 
    self._jsc = jsc or self._initialize_context(self._conf._jconf) 
  File "/home/nlp/spark/python/pyspark/context.py", line 201, in _initialize_context 
    return self._jvm.JavaSparkContext(jconf) 
  File "/home/nlp/spark/python/lib/py4j-0.8.2.1-src.zip/py4j/java_gateway.py", line 701, in __call__ 
  File "/home/nlp/spark/python/lib/py4j-0.8.2.1-src.zip/py4j/protocol.py", line 300, in get_return_value 
py4j.protocol.Py4JJavaError: An error occurred while calling None.org.apache.spark.api.java.JavaSparkContext. 
: java.lang.NullPointerException 
        at org.apache.spark.SparkContext.<init>(SparkContext.scala:497) 
        at org.apache.spark.api.java.JavaSparkContext.<init>(JavaSparkContext.scala:61) 
        at sun.reflect.NativeConstructorAccessorImpl.newInstance0(Native Method) 
        at sun.reflect.NativeConstructorAccessorImpl.newInstance(NativeConstructorAccessorImpl.java:62) 
        at sun.reflect.DelegatingConstructorAccessorImpl.newInstance(DelegatingConstructorAccessorImpl.java:45) 
        at java.lang.reflect.Constructor.newInstance(Constructor.java:408) 
        at py4j.reflection.MethodInvoker.invoke(MethodInvoker.java:234) 
        at py4j.reflection.ReflectionEngine.invoke(ReflectionEngine.java:379) 
        at py4j.Gateway.invoke(Gateway.java:214) 
        at py4j.commands.ConstructorCommand.invokeConstructor(ConstructorCommand.java:79) 
        at py4j.commands.ConstructorCommand.execute(ConstructorCommand.java:68) 
        at py4j.GatewayConnection.run(GatewayConnection.java:207) 
        at java.lang.Thread.run(Thread.java:745)

5 Answers 5

6

If you're running this example on Java 8, this may be due to Java 8's excessive memory allocation strategy: https://issues.apache.org/jira/browse/YARN-4714

You can force YARN to ignore this by setting up the following properties in yarn-site.xml

<property>
    <name>yarn.nodemanager.pmem-check-enabled</name>
    <value>false</value>
</property>

<property>
    <name>yarn.nodemanager.vmem-check-enabled</name>
    <value>false</value>
</property>
1
  • Thanks worked succesfully on Spark 2.1.1 Hadoop 2.7.6 Commented Aug 1, 2018 at 7:04
2

Try with deploy mode parameter, like this:

--deploy-mode cluster

I had problem like your, with this parameter it worked.

3
  • 2
    This does not work with --master yarn-client if you run this spark-shell --master yarn-client --deploy-mode cluster you get this error Error: Cluster deploy mode is not compatible with master "yarn-client"
    – lockwobr
    Commented Oct 5, 2015 at 17:20
  • @lockwobr yes, because --master yarn-client is a shortcut for --master yarn --deploy-mode client, thus you can not use it in combination with --deploy-mode cluster. Solution for your context: replace ` --master yarn-client` with ` --master yarn-cluster
    – Murmel
    Commented Sep 22, 2017 at 7:16
  • @Murmel For me your solution caused yet another problem: org.apache.hadoop.yarn.exceptions.InvalidResourceRequestException: Invalid resource request, requested virtual cores < 0, or requested virtual cores > max configured, requestedVirtualCores=8, maxVirtualCores=6 which cannot be solved by changing yarn.scheduler.maximum-allocation-vcores.
    – Anna
    Commented Sep 6, 2019 at 12:25
1

I experienced a similar problem using spark-submit and yarn-client (I got the same NPE/stacktrace). Tuning down my memory settings did the trick. It seems to fail like this when you try to allot too much memory. I would start by removing the --executor-memory and --driver-memory switches.

2
  • I have the same problem, but could you please tell me how and where to remove the --executor-memory and --driver-memory switches? I'm new to Python / Spark / cmd, so a step by step instruction would be well appreciated.
    – ElinaJ
    Commented Jul 8, 2015 at 14:03
  • If you look at how the OP is executing spark-submit, you'll see he is specifying --executor-memory 2g and --driver-memory 4g. If you omit these command line flags, they use the default of 512m for each. This falls in line with my suggestion/answer to tune down your memory settings. Commented Jul 9, 2015 at 20:18
1

I reduced the number of cores in the Advanced spark-env to make it work.

1
  • 2
    Although this information may help address the question, providing additional context regarding why and/or how it answers the question would significantly improve its long-term value. Please edit your answer to add some explanation. Commented May 19, 2016 at 15:47
0

I ran into this issue running (hdp 2.3 spark 1.3.1)

spark-shell  
--master yarn-client  
--driver-memory 4g 
--executor-memory 4g 
--executor-cores 1 
--num-executors 4

Solution for me was to set the spark config value:

spark.yarn.am.extraJavaOptions=-Dhdp.version=2.3.0.0-2557

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.